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This project integrates Hyperledger Fabric with machine learning to enhance transparency and trust in data-driven workflows. It outlines a blockchain-based strategy for data traceability, model auditability, and secure ML deployment across consortium networks.
aimaster-dev/hyperledger-ml
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This project explores howHyperledger Fabric can be used to enhancemachine learning workflows by adding trust, transparency, and traceability across a distributed network.
- Enableauditable, tamper-proof ML workflows via blockchain.
- Trackdata origin, model versions, and training parameters.
- Share models across consortium members withimmutable logs.
- Usesmart contracts to enforce model lifecycle policies.
- Hyperledger Fabric: Private permissioned blockchain infrastructure.
- Smart Contracts (Chaincode): Encodes policies for model training and access.
- Model Metadata: Logged during training (data version, algorithm, config).
- Audit Logs: Immutable records of data usage and model updates.
- Trusted ML governance for enterprises
- Tamper-proof traceability for models and data
- Supportsregulatory compliance and model reproducibility
- Collaborative model development across secure networks
- Financial fraud models shared between banks
- Supply chain optimizations across multiple vendors
- Healthcare ML models with logged data lineage
See the full strategy document:
📄Blockchain Strategy.docx
MIT License – for educational and enterprise use cases.
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This project integrates Hyperledger Fabric with machine learning to enhance transparency and trust in data-driven workflows. It outlines a blockchain-based strategy for data traceability, model auditability, and secure ML deployment across consortium networks.
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